{
 "nbformat": 4,
 "nbformat_minor": 0,
 "metadata": {
  "colab": {
   "name": "basic_example.ipynb",
   "provenance": [],
   "collapsed_sections": []
  },
  "kernelspec": {
   "name": "python3",
   "display_name": "Python 3"
  },
  "language_info": {
   "name": "python"
  },
  "accelerator": "GPU"
 },
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "lqRGAV4PrwqL"
   },
   "source": [
    "# Introduction to BlenderProc"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "y-i21RQVPngI"
   },
   "source": [
    "Note: This notebook makes use of the basic example which is available under `examples/basic`\n",
    "\n",
    "In this notebook, we will see how can we quickly set up the BlenderProc environment inside Google Colab and how can we generate photorealistic data which can later be used for many different applications."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "c-mShvZYWrRS"
   },
   "source": [
    "We firstly clone the official BlenderProc repo (repository) from GitHub using Git"
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "id": "f5AICxd_z5-V",
    "colab": {
     "base_uri": "https://localhost:8080/"
    },
    "outputId": "b980aad7-e9b0-4fac-c748-a2a3802edf1a"
   },
   "source": [
    "!git clone https://github.com/DLR-RM/BlenderProc.git\n",
    "%cd \"BlenderProc\""
   ],
   "execution_count": 1,
   "outputs": [
    {
     "output_type": "stream",
     "name": "stdout",
     "text": [
      "Cloning into 'BlenderProc'...\n",
      "remote: Enumerating objects: 32043, done.\u001B[K\n",
      "remote: Counting objects: 100% (8026/8026), done.\u001B[K\n",
      "remote: Compressing objects: 100% (1670/1670), done.\u001B[K\n",
      "remote: Total 32043 (delta 6417), reused 7820 (delta 6307), pack-reused 24017\u001B[K\n",
      "Receiving objects: 100% (32043/32043), 67.04 MiB | 4.23 MiB/s, done.\n",
      "Resolving deltas: 100% (23690/23690), done.\n",
      "/content/BlenderProc\n",
      "Branch 'blenderproc2-alpha' set up to track remote branch 'blenderproc2-alpha' from 'origin'.\n",
      "Switched to a new branch 'blenderproc2-alpha'\n"
     ]
    }
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "kMuWiS6k1ajB"
   },
   "source": [
    "To be able to use the blenderproc command, we install it via pip:"
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "id": "WAIBtiW0WC3y",
    "outputId": "52d53006-8bf4-4655-8124-d5819db7bf16",
    "colab": {
     "base_uri": "https://localhost:8080/"
    }
   },
   "source": [
    "!pip install -e ."
   ],
   "execution_count": 2,
   "outputs": [
    {
     "output_type": "stream",
     "name": "stdout",
     "text": [
      "Obtaining file:///content/BlenderProc\n",
      "Requirement already satisfied: setuptools in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (57.4.0)\n",
      "Requirement already satisfied: pyyaml in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (3.13)\n",
      "Requirement already satisfied: requests in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (2.23.0)\n",
      "Requirement already satisfied: matplotlib in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (3.2.2)\n",
      "Requirement already satisfied: numpy in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (1.19.5)\n",
      "Requirement already satisfied: Pillow in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (7.1.2)\n",
      "Requirement already satisfied: h5py in /usr/local/lib/python3.7/dist-packages (from blenderproc==2.0.0a4) (3.1.0)\n",
      "Requirement already satisfied: cached-property in /usr/local/lib/python3.7/dist-packages (from h5py->blenderproc==2.0.0a4) (1.5.2)\n",
      "Requirement already satisfied: python-dateutil>=2.1 in /usr/local/lib/python3.7/dist-packages (from matplotlib->blenderproc==2.0.0a4) (2.8.2)\n",
      "Requirement already satisfied: pyparsing!=2.0.4,!=2.1.2,!=2.1.6,>=2.0.1 in /usr/local/lib/python3.7/dist-packages (from matplotlib->blenderproc==2.0.0a4) (2.4.7)\n",
      "Requirement already satisfied: cycler>=0.10 in /usr/local/lib/python3.7/dist-packages (from matplotlib->blenderproc==2.0.0a4) (0.10.0)\n",
      "Requirement already satisfied: kiwisolver>=1.0.1 in /usr/local/lib/python3.7/dist-packages (from matplotlib->blenderproc==2.0.0a4) (1.3.2)\n",
      "Requirement already satisfied: six in /usr/local/lib/python3.7/dist-packages (from cycler>=0.10->matplotlib->blenderproc==2.0.0a4) (1.15.0)\n",
      "Requirement already satisfied: idna<3,>=2.5 in /usr/local/lib/python3.7/dist-packages (from requests->blenderproc==2.0.0a4) (2.10)\n",
      "Requirement already satisfied: urllib3!=1.25.0,!=1.25.1,<1.26,>=1.21.1 in /usr/local/lib/python3.7/dist-packages (from requests->blenderproc==2.0.0a4) (1.24.3)\n",
      "Requirement already satisfied: certifi>=2017.4.17 in /usr/local/lib/python3.7/dist-packages (from requests->blenderproc==2.0.0a4) (2021.5.30)\n",
      "Requirement already satisfied: chardet<4,>=3.0.2 in /usr/local/lib/python3.7/dist-packages (from requests->blenderproc==2.0.0a4) (3.0.4)\n",
      "Installing collected packages: blenderproc\n",
      "  Attempting uninstall: blenderproc\n",
      "    Found existing installation: blenderproc 2.0.0a4\n",
      "    Uninstalling blenderproc-2.0.0a4:\n",
      "      Successfully uninstalled blenderproc-2.0.0a4\n",
      "  Running setup.py develop for blenderproc\n",
      "Successfully installed blenderproc-2.0.0a4\n"
     ]
    }
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "BXlzLifCR80c"
   },
   "source": [
    "In order to run BlenderProc inside Google Colab, we first have to update the `LD_PRELOAD` environment variable"
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "id": "BMFdNLxNBO0R"
   },
   "source": [
    "import os\n",
    "\n",
    "# updating the LD_PRELOAD env variable\n",
    "os.environ[\"LD_PRELOAD\"] = \"/usr/lib/x86_64-linux-gnu/libtcmalloc_minimal.so.4.3.0\""
   ],
   "execution_count": 3,
   "outputs": []
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "1Lz4nvzETWXU"
   },
   "source": [
    "Finally, we run the BlenderProc program using the `blenderproc run`  along with required command line arguments. The first argument specifies the location of the python file that should be executed. The second argument corresponds to the camera pose file. In this case, we have specified two camera poses in the `examples/basics/basic/camera_positions` file. The third argument correponds to the output directory where our generated data will be stored. \n",
    "\n",
    "With the flag `--blender-install-path`, we specify the custom Blender install path which is necessary, as no user folder is availabe in colab."
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "colab": {
     "base_uri": "https://localhost:8080/"
    },
    "id": "jVZTximT08tN",
    "outputId": "b7622a3d-61b9-4163-cd62-40e4570f7b8e"
   },
   "source": [
    "# run the BlenderProc basic example\n",
    "!blenderproc run examples/basics/basic/main.py examples/resources/camera_positions examples/resources/scene.obj examples/basics/basic/output --blender-install-path ./"
   ],
   "execution_count": 4,
   "outputs": [
    {
     "output_type": "stream",
     "name": "stdout",
     "text": [
      "Downloading blender from https://download.blender.org/release/Blender2.93/blender-2.93.0-linux-x64.tar.xz\n",
      "100% (155802244 of 155802244) |###########| Elapsed Time: 0:00:06 Time:  0:00:06\n",
      "Using blender in ./blender-2.93.0-linux-x64\n",
      "Using temporary directory: /dev/shm/blender_proc_74ec8a987627418b9b44a7994f52121f\n",
      "Blender 2.93.0 (hash 84da05a8b806 built 2021-06-02 11:29:24)\n",
      "Looking in links: /tmp/tmpckz_hk4o\n",
      "Processing /tmp/tmpckz_hk4o/setuptools-49.2.1-py3-none-any.whl\n",
      "Processing /tmp/tmpckz_hk4o/pip-20.2.3-py2.py3-none-any.whl\n",
      "Installing collected packages: setuptools, pip\n",
      "\u001B[31mERROR: After October 2020 you may experience errors when installing or updating packages. This is because pip will change the way that it resolves dependency conflicts.\n",
      "\n",
      "We recommend you use --use-feature=2020-resolver to test your packages with the new resolver before it becomes the default.\n",
      "\n",
      "blenderproc 2.0.0a4 requires h5py, which is not installed.\n",
      "blenderproc 2.0.0a4 requires matplotlib, which is not installed.\n",
      "blenderproc 2.0.0a4 requires numpy, which is not installed.\n",
      "blenderproc 2.0.0a4 requires Pillow, which is not installed.\n",
      "blenderproc 2.0.0a4 requires pyyaml, which is not installed.\n",
      "blenderproc 2.0.0a4 requires requests, which is not installed.\u001B[0m\n",
      "Successfully installed pip-20.2.3 setuptools-49.2.1\n",
      "Collecting pip\n",
      "  Downloading pip-21.3-py3-none-any.whl (1.7 MB)\n",
      "\u001B[K     |████████████████████████████████| 1.7 MB 11.5 MB/s \n",
      "\u001B[?25hInstalling collected packages: pip\n",
      "  Attempting uninstall: pip\n",
      "    Found existing installation: pip 20.2.3\n",
      "    Uninstalling pip-20.2.3:\n",
      "      Successfully uninstalled pip-20.2.3\n",
      "Successfully installed pip-21.3\n",
      "Installing pip package wheel None\n",
      "Collecting wheel\n",
      "  Downloading wheel-0.37.0-py2.py3-none-any.whl (35 kB)\n",
      "Installing collected packages: wheel\n",
      "Successfully installed wheel-0.37.0\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
      "Installing pip package pyyaml 5.1.2\n",
      "Collecting pyyaml==5.1.2\n",
      "  Downloading PyYAML-5.1.2.tar.gz (265 kB)\n",
      "     |████████████████████████████████| 265 kB 10.4 MB/s            \n",
      "\u001B[?25h  Preparing metadata (setup.py) ... \u001B[?25l\u001B[?25hdone\n",
      "Building wheels for collected packages: pyyaml\n",
      "  Building wheel for pyyaml (setup.py) ... \u001B[?25l\u001B[?25hdone\n",
      "  Created wheel for pyyaml: filename=PyYAML-5.1.2-cp39-cp39-linux_x86_64.whl size=44102 sha256=f52aa195c51231a2413253c99a52e6215a916db96d4966c737016f489e6b3187\n",
      "  Stored in directory: /root/.cache/pip/wheels/93/72/1b/db6b10e2b46c76704d0eb0716d72091146e539648f6b164bae\n",
      "Successfully built pyyaml\n",
      "Installing collected packages: pyyaml\n",
      "Successfully installed pyyaml-5.1.2\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[?25hInstalling collected packages: pillow, numpy, imageio\n",
      "Successfully installed imageio-2.9.0 numpy-1.21.2 pillow-8.3.2\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[?25hCollecting cycler>=0.10\n",
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      "Collecting kiwisolver>=1.0.1\n",
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      "\u001B[?25hCollecting six\n",
      "  Downloading six-1.16.0-py2.py3-none-any.whl (11 kB)\n",
      "Installing collected packages: six, python-dateutil, pyparsing, pillow, numpy, kiwisolver, cycler, tifffile, scipy, PyWavelets, networkx, matplotlib, imageio, scikit-image\n",
      "Successfully installed PyWavelets-1.1.1 cycler-0.10.0 imageio-2.9.0 kiwisolver-1.3.2 matplotlib-3.4.3 networkx-2.6.3 numpy-1.21.2 pillow-8.3.2 pyparsing-2.4.7 python-dateutil-2.8.2 scikit-image-0.18.3 scipy-1.7.1 six-1.16.0 tifffile-2021.10.12\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[?25hInstalling collected packages: pypng\n",
      "Successfully installed pypng-0.0.20\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
      "Installing pip package scipy 1.7.1\n",
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      "Installing collected packages: numpy, scipy\n",
      "Successfully installed numpy-1.21.2 scipy-1.7.1\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "Collecting pillow>=6.2.0\n",
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      "Collecting six\n",
      "  Using cached six-1.16.0-py2.py3-none-any.whl (11 kB)\n",
      "Installing collected packages: six, python-dateutil, pyparsing, pillow, numpy, kiwisolver, cycler, matplotlib\n",
      "Successfully installed cycler-0.10.0 kiwisolver-1.3.2 matplotlib-3.4.3 numpy-1.21.2 pillow-8.3.2 pyparsing-2.4.7 python-dateutil-2.8.2 six-1.16.0\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
      "Installing pip package pytz 2021.1\n",
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      "\u001B[?25hInstalling collected packages: pytz\n",
      "Successfully installed pytz-2021.1\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
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      "Successfully installed joblib-1.1.0 numpy-1.21.2 scikit-learn-0.24.2 scipy-1.7.1 threadpoolctl-3.0.0\n",
      "\u001B[33mWARNING: Running pip as the 'root' user can result in broken permissions and conflicting behaviour with the system package manager. It is recommended to use a virtual environment instead: https://pip.pypa.io/warnings/venv\u001B[0m\n",
      "Device Tesla K80 of type CUDA found and used.\n",
      "(  0.0002 sec |   0.0002 sec) Importing OBJ 'examples/resources/scene.obj'...\n",
      "  (  0.0003 sec |   0.0001 sec) Parsing OBJ file...\n",
      "    (  0.0216 sec |   0.0213 sec) Done, loading materials and images...\n",
      "    (  0.0323 sec |   0.0320 sec) Done, building geometries (verts:841 faces:854 materials: 9 smoothgroups:0) ...\n",
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      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.59 | Compositing | Tile 2-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.61 | Compositing | Tile 3-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.63 | Compositing | Tile 4-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.63 | Compositing | Tile 1-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.63 | Compositing | Tile 2-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.63 | Compositing | Tile 3-4\n",
      "Fra:1 Mem:52.76M (Peak 52.76M) | Time:00:10.63 | Compositing | Tile 4-4\n",
      "Fra:1 Mem:52.70M (Peak 52.76M) | Time:00:10.63 | Compositing | De-initializing execution\n",
      "Saved: /dev/shm/blender_proc_74ec8a987627418b9b44a7994f52121f/normals_0001.exr\n",
      "Saved: /dev/shm/blender_proc_74ec8a987627418b9b44a7994f52121f/distance_0001.exr\n",
      "Saved: '/dev/shm/blender_proc_74ec8a987627418b9b44a7994f52121f/rgb_0001.png'\n",
      " Time: 00:10.77 (Saving: 00:00.05)\n",
      "\n",
      "It seems the freeimage library which is necessary to read .exr files cannot be found on your computer.\n",
      "Gonna try to download it automatically.\n",
      "Imageio: 'libfreeimage-3.16.0-linux64.so' was not found on your computer; downloading it now.\n",
      "Try 1. Download from https://github.com/imageio/imageio-binaries/raw/master/freeimage/libfreeimage-3.16.0-linux64.so (4.6 MB)\n",
      "Downloading: 8192/4830080 bytes (0.2%)\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b\b4830080/4830080 bytes (100.0%)\n",
      "  Done\n",
      "File saved as /root/.imageio/freeimage/libfreeimage-3.16.0-linux64.so.\n",
      "Merging data for frame 0 into examples/basics/basic/output/0.hdf5\n",
      "Merging data for frame 1 into examples/basics/basic/output/1.hdf5\n",
      "\n",
      "Blender quit\n",
      "Cleaning temporary directory\n"
     ]
    }
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "xbyP7EC4T9kc"
   },
   "source": [
    "We visualize the first rendered color, depth and normal image which corresponds to the `0.hdf5` file inside the `examples/basics/basic/output` folder"
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "colab": {
     "base_uri": "https://localhost:8080/",
     "height": 827
    },
    "id": "6PeHFCV2HbbA",
    "outputId": "7fe6b279-ef01-4cdb-d01b-f04c61096d99"
   },
   "source": [
    "# visualize the generated data (0.hdf5)\n",
    "%run \"-m\" \"blenderproc\" \"vis\" \"hdf5\" \"examples/basics/basic/output/0.hdf5\""
   ],
   "execution_count": 5,
   "outputs": [
    {
     "output_type": "stream",
     "name": "stdout",
     "text": [
      "examples/basics/basic/output/0.hdf5 contains the following keys: <KeysViewHDF5 ['blender_proc_version', 'colors', 'distance', 'normals']>\n"
     ]
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    }
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "id": "fg72XDwWTbhf"
   },
   "source": [
    "We visualize the second rendered color, depth and normal image which corresponds to the `1.hdf5` file inside the `examples/basics/basic/output` folder"
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "colab": {
     "base_uri": "https://localhost:8080/",
     "height": 827
    },
    "id": "u0YuChqdzX2p",
    "outputId": "c3bd3b38-7aeb-4249-818f-31eb650de58d"
   },
   "source": [
    "# visualize the generated data (1.hdf5)\n",
    "%run \"-m\" \"blenderproc\" \"vis\" \"hdf5\" \"examples/basics/basic/output/1.hdf5\""
   ],
   "execution_count": 6,
   "outputs": [
    {
     "output_type": "stream",
     "name": "stdout",
     "text": [
      "examples/basics/basic/output/1.hdf5 contains the following keys: <KeysViewHDF5 ['blender_proc_version', 'colors', 'distance', 'normals']>\n"
     ]
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    },
    {
     "output_type": "display_data",
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     }
    }
   ]
  },
  {
   "cell_type": "code",
   "metadata": {
    "id": "XXTHqas_WyYb"
   },
   "source": [
    ""
   ],
   "execution_count": null,
   "outputs": []
  }
 ]
}